- New York NY, US Keith ITO - New York NY, US Marshall JONES - New York NY, US Daniel KANTOR - New York NY, US Matthew ZEILER - New York NY, US
International Classification:
G06F 3/0484
Abstract:
In certain implementations, a user request to add a new concept may be received. A set of media item recommendations may be caused to be loaded on a user interface for presentation to a user responsive to the user request to add the new concept. The media item recommendation set may include a set of recommendations loaded on an on-screen portion of the user interface and a set of recommendations loaded on an off-screen portion of the user interface. The on-screen user interface portion is visible to the user at a first time. The off-screen user interface portion is not being visible to the user at the first time. A user selection of one or more recommendations of the on-screen recommendation set is received. The off-screen recommendation set may be caused to be updated on the user interface during the presentation of the media item recommendation set based on the user recommendation selection.
Prediction Model Training Via Live Stream Concept Association
In certain embodiments, training of a neural network or other prediction model may be facilitated via live stream concept association. In some embodiments, a live video stream may be loaded on a user interface for presentation to a user. A user selection related to a frame of the live video stream may be received via the user interface during the presentation of the live video stream on the user interface, where the user selection indicates a presence of a concept in the frame of the live video stream. In response to the user selection related to the frame, an association of at least a portion of the frame of the live video stream and the concept may be generated, and the neural network or other prediction model may be trained based on the association of at least the portion of the frame with the concept.
Prediction Model Training Via Live Stream Concept Association
In certain embodiments, training of a neural network or other prediction model may be facilitated via live stream concept association. In some embodiments, a live video stream may be loaded on a user interface for presentation to a user. A user selection related to a frame of the live video stream may be received via the user interface during the presentation of the live video stream on the user interface, where the user selection indicates a presence of a concept in the frame of the live video stream. In response to the user selection related to the frame, an association of at least a portion of the frame of the live video stream and the concept may be generated, and the neural network or other prediction model may be trained based on the association of at least the portion of the frame with the concept.
Artificial Intelligence Model And Data Collection/Development Platform
- New York NY, US Daniel KANTOR - New York NY, US Christopher FOX - New York NY, US Cassidy WILLIAMS - New York NY, US
International Classification:
G06N 99/00 G06N 5/04
Abstract:
In some embodiments, a service platform that facilitates artificial intelligence model and data collection and collection may be provided. Input/output information derived from machine learning models may be obtained via the service platform. The input/output information may indicate (i) first items provided as input to at least one model of the machine learning models, (ii) first prediction outputs derived from the at least one model's processing of the first items, (iii) second items provided as input to at least another model of the machine learning models, (iv) second prediction outputs derived from the at least one other model's processing of the second items, and (v) other inputs and outputs. The input/output information may be provided via the service platform to update a first machine learning model. The first machine learning model may be updated based on the input/output information being provided as input to the first machine learning model.
Artificial Intelligence Development Via User-Selectable/Connectable Model Representations
- New York NY, US Daniel KANTOR - New York NY, US Marshall JONES - New York NY, US Christopher FOX - New York NY, US
International Classification:
G06N 99/00 G06F 17/30
Abstract:
In some embodiments, user-selectable/connectable model representations may be provided via a user interface to facilitate artificial intelligence development. The model representations may comprises first and second machine learning model (ML) representations corresponding to first and second ML models, and non-ML model representations corresponding to non-ML models. Based on user input indicating selection of the first and second ML model representations and a non-ML model representation corresponding to a non-ML model, at least a portion of a software application may be generated such that the software application comprises (i) an instance of the first ML model, an instance of the second ML model, and an instance of the non-ML model and (ii) an input/output data path between the instance of the first ML model and at least one other instance, the at least one other instance comprising the instance of the second ML model or the instance of the non-ML model.
Prediction Model Training Via Live Stream Concept Association
In certain embodiments, training of a neural network or other prediction model may be facilitated via live stream concept association. In some embodiments, a live video stream may be loaded on a user interface for presentation to a user. A user selection related to a frame of the live video stream may be received via the user interface during the presentation of the live video stream on the user interface, where the user selection indicates a presence of a concept in the frame of the live video stream. In response to the user selection related to the frame, an association of at least a portion of the frame of the live video stream and the concept may be generated, and the neural network or other prediction model may be trained based on the association of at least the portion of the frame with the concept.
Systems And Methods For Updating Recommendations On A User Interface In Real-Time Based On User Selection Of Recommendations Provided Via The User Interface
- New York NY, US Keith Ito - New York NY, US Marshall Jones - New York NY, US Daniel Kantor - New York NY, US Matthew Zeiler - New York NY, US
International Classification:
G06N 7/02 G06F 3/0484
Abstract:
In certain implementations, a user request to add a new concept may be received. A set of media item recommendations may be caused to be loaded on a user interface for presentation to a user responsive to the user request to add the new concept. The media item recommendation set may include a set of recommendations loaded on an on-screen portion of the user interface and a set of recommendations loaded on an off-screen portion of the user interface. The on-screen user interface portion is visible to the user at a first time. The off-screen user interface portion is not being visible to the user at the first time. A user selection of one or more recommendations of the on-screen recommendation set is received. The off-screen recommendation set may be caused to be updated on the user interface during the presentation of the media item recommendation set based on the user recommendation selection.
Dr. Kantor graduated from the Ben Gurion Univ of the Negev, I & J Goldman Sch of Med, Beer Sheva, Israel in 2002. He works in Ponte Vedra Beach, FL and specializes in Neurology.
This is why it is so important for patients to work closely with their physicians in taking advantage of medical history-taking and comprehensive physical examinations, says Daniel Kantor, secretary of the Duval County Medical Society and president of the Florida Society of Neurology. He also is t